Stephen King’s scientific contributions

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Publications (1)


Regions of Wales. The red rectangles represent the three areas used for the validation step.
Key knowledge-based growth stages of the eight crop types with associated theoretical periods in Wales and indications of changes in canopy size. Note: canopy size = any change in green biomass, green leaf area index (GLAI), canopy cover, or height.
Flowchart of the methodology. Note: K-based crop map = knowledge-based crop map.
Median VH/VV, VH, and VV time series (in red) and standard deviation (in grey) for the ten plots of winter barley (a,d,g), winter wheat (b,e,h), and winter rapeseed (c,f,i) used for benchmarking. Key dynamics are indicated with reference to the knowledge-based crop growth stages.
Median VH/VV, VH and VV time series (in red) and standard deviation (in grey) for the ten plots of spring barley (a,f,k), maize (b,g,l), potatoes (c,h,m), spring wheat (d,i,n), and beets (e,j,o) used for benchmarking. Key dynamics are indicated with reference to the knowledge-based crop growth stages.

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National Crop Mapping Using Sentinel-1 Time Series: A Knowledge-Based Descriptive Algorithm
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  • Full-text available

February 2021

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1,216 Reads

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37 Citations

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National-level mapping of crop types is important to monitor food security, understand environmental conditions, inform optimal use of the landscape, and contribute to agricultural policy. Countries or economic regions currently and increasingly use satellite sensor data for classifying crops over large areas. However, most methods have been based on machine learning algorithms, with these often requiring large training datasets that are not always available and may be costly to produce or collect. Focusing on Wales (United Kingdom), the research demonstrates how the knowledge that the agricultural community has gathered together over past decades can be used to develop algorithms for mapping different crop types. Specifically, we aimed to develop an alternative method for consistent and accurate crop type mapping where cloud cover is quite persistent and without the need for extensive in situ/ground datasets. The classification approach is parcel-based and informed by concomitant analysis of knowledge-based crop growth stages and Sentinel-1 C-band SAR time series. For 2018, crop type classifications were generated nationally for Wales, with regional overall accuracies ranging between 85.8 % and 90.6 %. The method was particularly successful in distinguishing barley from wheat, which is a major source of error in other crop products available for Wales. This study demonstrates that crops can be accurately identified and mapped across a large area (i.e., Wales) using Sentinel-1 C-band data and by capitalizing on knowledge of crop growth stages. The developed algorithm is flexible and, compared to the other methods that allow crop mapping in Wales, the approach provided more consistent discrimination and lower variability in accuracies between classes and regions.

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Citations (1)


... Crop mapping index-based approaches have simpler structures and easier replicability compared to data-driven algorithms. National-scale crop data products have been successfully generated using knowledge-based approaches (Planque et al., 2021;Zhang et al., 2017). However, it is challenging to discriminate multiple crop types since crop mapping indices are typically designed to highlight one single targeted crop based on its key phenological stages (Ashourloo et al., 2019;Xu et al., 2023). ...

Reference:

A robust framework for mapping complex cropping patterns: The first national-scale 10 m map with 10 crops in China using Sentinel 1/2 images
National Crop Mapping Using Sentinel-1 Time Series: A Knowledge-Based Descriptive Algorithm